PhD ThesisThe presence of micropollutants in wastewater is problematic, as many micropollutants
exert negative ecological and toxicological effects in their environment. A well-known
effect of micropollutants is the feminisation of aquatic wildlife by environmental estrogens, a proportion of which enter water courses from municipal sources via wastewater
treatment plants (WWTPs). While WWTPs remove some micropollutants, they are
not designed to do so. Given that WWTPs already have high operating costs (both
financially and energetically), there is a need for novel approaches to micropollutant
removal that are both cost-effective and environmentally sustainable. One proposed
approach is to use enzymes to degrade micropollutants, which requires an understanding of metabolic pathways for the desired micropollutant, and a strategy for deploying
the enzymes in the environment.
Although tools exist to assist with metabolic pathway prediction and enzyme discovery,
there are currently no computational approaches that are able to identify enzymes from
a user’s collection of proteins (given a query compound and expected change to that
query compound). To address this research gap, we developed EnSeP, a data-driven,
transformation-specific approach to enzyme discovery. Using EnSeP, we then identified
candidate enzymes involved in estradiol degradation.
Recent advances in synthetic biology mean that deploying a single synthetic construct
in multiple microorganisms is feasible. In the context of micropollutant metabolism,
this means that a biodegradative pathway could be introduced into multiple organisms
in a community simultaneously, providing more opportunities for the construct (and
its functionality) to persist in the population long-term. However, current design
tools have not yet been adapted for multiple organism applications. To address this
research gap, we developed an evolutionary algorithm (EA) that optimises a single
coding sequence (CDS) for multiple hosts. Finally, based on insights from developing
the EA, we developed an improved version of the single-organism CDS optimisation
algorithm that the EA is based on
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